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arxiv: 1105.1062 · v2 · pith:5S2NHU2Pnew · submitted 2011-05-05 · 💻 cs.IR · cond-mat.stat-mech· nlin.CD

Universal Emergence of PageRank

classification 💻 cs.IR cond-mat.stat-mechnlin.CD
keywords pagerankalphauniversalrightarrowcoredistributionemergencegoogle
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The PageRank algorithm enables to rank the nodes of a network through a specific eigenvector of the Google matrix, using a damping parameter $\alpha \in ]0,1[$. Using extensive numerical simulations of large web networks, with a special accent on British University networks, we determine numerically and analytically the universal features of PageRank vector at its emergence when $\alpha \rightarrow 1$. The whole network can be divided into a core part and a group of invariant subspaces. For $ \alpha \rightarrow 1$ the PageRank converges to a universal power law distribution on the invariant subspaces whose size distribution also follows a universal power law. The convergence of PageRank at $ \alpha \rightarrow 1$ is controlled by eigenvalues of the core part of the Google matrix which are extremely close to unity leading to large relaxation times as for example in spin glasses.

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